Dong Jiayi, Li Jiahao, Wang Fei
IEEE/ACM Trans Comput Biol Bioinform. 2024 Nov-Dec;21(6):2089-2101. doi: 10.1109/TCBB.2024.3442536. Epub 2024 Dec 10.
Understanding the intricate regulatory relationships among genes is crucial for comprehending the development, differentiation, and cellular response in living systems. Consequently, inferring gene regulatory networks (GRNs) based on observed data has gained significant attention as a fundamental goal in biological applications. The proliferation and diversification of available data present both opportunities and challenges in accurately inferring GRNs. Deep learning, a highly successful technique in various domains, holds promise in aiding GRN inference. Several GRN inference methods employing deep learning models have been proposed; however, the selection of an appropriate method remains a challenge for life scientists. In this survey, we provide a comprehensive analysis of 12 GRN inference methods that leverage deep learning models. We trace the evolution of these major methods and categorize them based on the types of applicable data. We delve into the core concepts and specific steps of each method, offering a detailed evaluation of their effectiveness and scalability across different scenarios. These insights enable us to make informed recommendations. Moreover, we explore the challenges faced by GRN inference methods utilizing deep learning and discuss future directions, providing valuable suggestions for the advancement of data scientists in this field.
理解基因之间复杂的调控关系对于理解生命系统中的发育、分化和细胞反应至关重要。因此,基于观测数据推断基因调控网络(GRN)作为生物学应用中的一个基本目标受到了广泛关注。可用数据的激增和多样化在准确推断GRN方面既带来了机遇也带来了挑战。深度学习作为一种在各个领域都非常成功的技术,有望助力GRN推断。已经提出了几种采用深度学习模型的GRN推断方法;然而,选择合适的方法对生命科学家来说仍然是一个挑战。在本次综述中,我们对12种利用深度学习模型的GRN推断方法进行了全面分析。我们追溯了这些主要方法的发展历程,并根据适用数据的类型对它们进行了分类。我们深入探讨了每种方法的核心概念和具体步骤,对它们在不同场景下的有效性和可扩展性进行了详细评估。这些见解使我们能够提出明智的建议。此外,我们探讨了利用深度学习的GRN推断方法所面临的挑战,并讨论了未来的发展方向,为该领域的数据科学家提供了有价值的建议。